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project will employ calculations based on density functional theory (DFT) and extensions of DFT, such as DFT+U and DFT in combination with dynamical mean-field theory (DMFT). It is embedded in a consortium
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validation, in close feedback with the group. We offer A unique environment combining theory, computation, and experiment at ETH Zürich. Close collaboration with experts in photonics, nonlinear dynamics, and
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role in a vibrant group exploring the molecular mechanisms underpinning bacterial evolution and resistance. This fully-funded, full-time position combined with ETH's excellent working conditions, makes
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to perform state-of-the-art research in one of the most dynamic scientific institutions in Europe. Competitive salary and excellent educational conditions. Term of employment: 1-year fixed-term contract (CDD
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-resolution, high-density 3D seismic survey was acquired in summer 2025 as a baseline for future monitoring. Job description You will work at the interface of reflection seismology, geophysical monitoring, and
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, the candidate should be committed to: doing field work, wet-lab work, learning about bioinformatics, including R and shell programing, and analyzing data using population genetics tools and theories
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& Competencies: Familiarity with computational fluid dynamics and ability to design mechanical and microfluidic components Strong expertise in cell culture and molecular biology techniques Experience in
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that explicitly incorporates protein–ligand dynamics. You will be responsible for: Designing and implementing innovative deep neural network models. Integrating physical principles and molecular modeling knowledge
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to estimate both contemporary and past effective population sizes. With these in hands, the project aims to verify how well reported dynamics of decline in rare plant species align with inferred trajectories
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methods and protocols A dynamic research group in a state-of-the-art-equipped environment Dedicated supervision and career mentoring A fully funded PhD position Application / Contact Please use the link